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Distributed Processing System, 2020, 1(1); doi: 10.38007/DPS.2020.010103.

Random Power Flow Calculation of Distribution System based on Distributed Generation

Author(s)

Vanrun Verman

Corresponding Author:
Vanrun Verman
Affiliation(s)

Bangladesh University of Engineering and Technology, Bangladesh

Abstract

In recent years, distributed generation(DG) has been widely introduced into energy systems. It can not only solve the problem of insufficient security and stability of large-scale energy grid, improve system reliability, but also reduce construction and operation costs and reduce environmental pollution. However, wind power generation, solar power generation and other power generation methods that rely on natural conditions will produce random changes in output, resulting in the system voltage exceeding the limit. On this basis, this paper studies and analyzes the stochastic power flow(PL) calculation of DG and distribution system(DS). A stochastic PL algorithm is proposed. The experimental results show that the stochastic PL calculation of DG and DS is very important to improve the quality of power supply.

Keywords

Distributed Generation, Distribution System, Random Power Flow, Photovoltaic Power Generation

Cite This Paper

Vanrun Verman. Random Power Flow Calculation of Distribution System based on Distributed Generation. Distributed Processing System (2020), Vol. 1, Issue 1: 17-24. https://doi.org/10.38007/DPS.2020.010103.

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